Title :
Variational bayes inference of spatial mixture models for segmentation
Author :
Woolrich, Mark W. ; Behrens, Timothy E.
Author_Institution :
FMRIB, Oxford
Abstract :
Mixture models are commonly used in the statistical segmentation of images. For example, they can be used for the segmentation of structural medical images into different matter types, or of statistical parametric maps into activating and nonactivating brain regions in functional imaging. Spatial mixture models have been developed to augment histogram information with spatial regularization using Markov random fields (MRFs). In previous work, an approximate model was developed to allow adaptive determination of the parameter controlling the strength of spatial regularization. Inference was performed using Markov Chain Monte Carlo (MCMC) sampling. However, this approach is prohibitively slow for large datasets. In this work, a more efficient inference approach is presented. This combines a variational Bayes approximation with a second-order Taylor expansion of the components of the posterior distribution, which would otherwise be intractable to Variational Bayes. This provides inference on fully adaptive spatial mixture models an order of magnitude faster than MCMC. We examine the behavior of this approach when applied to artificial data with different spatial characteristics, and to functional magnetic resonance imaging statistical parametric maps
Keywords :
Bayes methods; Markov processes; Monte Carlo methods; biomedical MRI; brain; image segmentation; medical image processing; variational techniques; Markov chain Monte Carlo sampling; Markov random fields; activating brain region; functional imaging; functional magnetic resonance imaging statistical parametric maps; nonactivating brain region; second-order Taylor expansion; spatial mixture models; spatial regularization; statistical image segmentation; structural medical images; variational Bayes inference; Adaptive control; Biomedical imaging; Histograms; Image segmentation; Magnetic resonance imaging; Markov random fields; Monte Carlo methods; Programmable control; Sampling methods; Taylor series;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2006.880682